首页> 外文期刊>European Journal of Medicinal Chemistry: Chimie Therapeutique >Support vector machines: development of QSAR models for predicting anti-HIV-1 activity of TIBO derivatives.
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Support vector machines: development of QSAR models for predicting anti-HIV-1 activity of TIBO derivatives.

机译:支持向量机:开发QSAR模型以预测TIBO衍生物的抗HIV-1活性。

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摘要

The tetrahydroimidazo[4,5,1-jk][1,4]benzodiazepinone (TIBO) derivatives, as non-nucleoside reverse transcriptase inhibitors, acquire a significant place in the treatment of the infections by the HIV. In the present paper, the support vector machines (SVM) are used to develop quantitative relationships between the anti-HIV activity and four molecular descriptors of 82 TIBO derivatives. The results obtained by SVM give good statistical results compared to those given by multiple linear regressions and artificial neural networks. The contribution of each descriptor to structure-activity relationships was evaluated. It indicates the importance of the hydrophobic parameter. The proposed method can be successfully used to predict the anti-HIV of TIBO derivatives with only four molecular descriptors which can be calculated directly from molecular structure alone.
机译:作为非核苷类逆转录酶抑制剂,四氢咪唑并[4,5,1-jk] [1,4]苯并二氮杂酮(TIBO)衍生物在HIV感染的治疗中占有重要地位。在本文中,使用支持向量机(SVM)来建立抗HIV活性与82种TIBO衍生物的四个分子描述符之间的定量关系。与多元线性回归和人工神经网络给出的结果相比,SVM获得的结果具有良好的统计结果。评价了每个描述符对结构-活性关系的贡献。它表明了疏水参数的重要性。所提出的方法可以成功地用于预测TIBO衍生物的抗HIV,仅需四个分子描述子就可以直接从分子结构直接计算出。

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